# -*- coding: utf-8 -*-
from ..utils import get_offset, symmetric_triangle, verify_series, weights

def swma(close, length=None, asc=None, offset=None, **kwargs):
    """Indicator: Symmetric Weighted Moving Average (SWMA)"""
    # Validate Arguments
    close = verify_series(close)
    length = int(length) if length and length > 0 else 10
    min_periods = int(kwargs['min_periods']) if 'min_periods' in kwargs and kwargs['min_periods'] is not None else length
    asc = asc if asc else True
    offset = get_offset(offset)

    # Calculate Result
    triangle = symmetric_triangle(length, weighted=True)
    swma = close.rolling(length, min_periods=length).apply(weights(triangle), raw=True)

    # Offset
    if offset != 0:
        swma = swma.shift(offset)

    # Name & Category
    swma.name = f"SWMA_{length}"
    swma.category = 'overlap'

    return swma



swma.__doc__ = \
"""Symmetric Weighted Moving Average (SWMA)

Symmetric Weighted Moving Average where weights are based on a symmetric
triangle.  For example: n=3 -> [1, 2, 1], n=4 -> [1, 2, 2, 1], etc...  This moving
average has variable length in contrast to TradingView's fixed length of 4.

Source: 
    https://www.tradingview.com/study-script-reference/#fun_swma

Calculation:
    Default Inputs:
        length=10

    def weights(w):
        def _compute(x):
            return np.dot(w * x)
        return _compute

    triangle = utils.symmetric_triangle(length - 1)
    SWMA = close.rolling(length)_.apply(weights(triangle), raw=True)

Args:
    close (pd.Series): Series of 'close's
    length (int): It's period.  Default: 10
    asc (bool): Recent values weigh more.  Default: True
    offset (int): How many periods to offset the result.  Default: 0

Kwargs:
    fillna (value, optional): pd.DataFrame.fillna(value)
    fill_method (value, optional): Type of fill method

Returns:
    pd.Series: New feature generated.
"""